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Genetic algorithm for the design of molecules with desired properties
Authors:Kamphausen Stefan  Höltge Nils  Wirsching Frank  Morys-Wortmann Corinna  Riester Daniel  Goetz Ruediger  Thürk Marcel  Schwienhorst Andreas
Institution:(1) Abteilung fuer Molekulare Genetik und Praeparative Molekularbiologie, Institut für Mikrobiologie und Genetik, Grisebachstr. 8, 37077 Goettingen, Germany;(2) Novel Science International GmbH, Obere Karspuele 36, 37073 Goettingen, Germany
Abstract:The design of molecules with desired properties is still a challenge because of the largely unpredictable end results. Computational methods can be used to assist and speed up this process. In particular, genetic algorithms have proved to be powerful tools with a wide range of applications, e.g. in the field of drug development. Here, we propose a new genetic algorithm that has been tailored to meet the demands of de novo drug design, i.e. efficient optimization based on small training sets that are analyzed in only a small number of design cycles. The efficiency of the design algorithm was demonstrated in the context of several different applications. First, RNA molecules were optimized with respect to folding energy. Second, a spinglass was optimized as a model system for the optimization of multiletter alphabet biopolymers such as peptides. Finally, the feasibility of the computer-assisted molecular design approach was demonstrated for the de novo construction of peptidic thrombin inhibitors using an iterative process of 4 design cycles of computer-guided optimization. Synthesis and experimental fitness determination of only 600 different compounds from a virtual library of more than 1017 molecules was necessary to achieve this goal.These authors contributed equally to the results presentedThese authors contributed equally to the results presentedThese authors contributed equally to the results presentedThese authors contributed equally to the results presented
Keywords:Genetic algorithm  thrombin inhibitor screening  computer-assisted drug discovery  peptide library  de novo design
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